Bimodal Visualization of Industrial X-Ray and Neutron Computed Tomography Data

Xuan Huang;Haichao Miao;Hyojin Kim;Andrew Townsend;Kyle Champley;Joseph Tringe;Valerio Pascucci;Peer-Timo Bremer
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Abstract

Advanced manufacturing creates increasingly complex objects with material compositions that are often difficult to characterize by a single modality. Our collaborating domain scientists are going beyond traditional methods by employing both X-ray and neutron computed tomography to obtain complementary representations expected to better resolve material boundaries. However, the use of two modalities creates its own challenges for visualization, requiring either complex adjustments of bimodal transfer functions or the need for multiple views. Together with experts in nondestructive evaluation, we designed a novel interactive bimodal visualization approach to create a combined view of the co-registered X-ray and neutron acquisitions of industrial objects. Using an automatic topological segmentation of the bivariate histogram of X-ray and neutron values as a starting point, the system provides a simple yet effective interface to easily create, explore, and adjust a bimodal visualization. We propose a widget with simple brushing interactions that enables the user to quickly correct the segmented histogram results. Our semiautomated system enables domain experts to intuitively explore large bimodal datasets without the need for either advanced segmentation algorithms or knowledge of visualization techniques. We demonstrate our approach using synthetic examples, industrial phantom objects created to stress bimodal scanning techniques, and real-world objects, and we discuss expert feedback.
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工业 X 射线和中子计算机断层扫描数据的双模态可视化
先进制造业创造出越来越复杂的物体,其材料组成往往难以用单一模态来表征。我们合作领域的科学家正在超越传统方法,采用x射线和中子计算机断层扫描来获得互补的表示,以期更好地解决材料边界问题。然而,使用两种模态给可视化带来了挑战,要么需要对双峰传递函数进行复杂的调整,要么需要多个视图。与无损评估专家一起,我们设计了一种新颖的交互式双峰可视化方法,以创建工业物体共同注册的x射线和中子获取的组合视图。使用x射线和中子值的二元直方图的自动拓扑分割作为起点,该系统提供了一个简单而有效的界面,可以轻松地创建、探索和调整双峰可视化。我们提出了一个具有简单刷刷交互的小部件,使用户能够快速纠正分割的直方图结果。我们的半自动化系统使领域专家能够直观地探索大型双峰数据集,而无需高级分割算法或可视化技术知识。我们展示了我们的方法使用合成的例子,工业幻影对象创建强调双峰扫描技术,和现实世界的对象,我们讨论专家的反馈。
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HYVE: Hybrid Vertex Encoder for Neural Distance Fields. Errata to "DiffCap: Diffusion-Based Real-Time Human Motion Capture Using Sparse IMUs and a Monocular Camera". DIQ-MPM: Dual Interface Quadrature MPM for Simulating Large Deformation and Fluid-Solid Coupling. WonderTex: Consistent-and-Seamless Texture Generation with Text-Guided Multi-View Image Diffusion Models. AHC-NeRF: Autonomous, High-Quality Neural Reconstruction of Two-Layer Complex Nested Transparent Objects.
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